Affiliation:
1. National University of Defense Technology
2. Simon Fraser University
3. INRIA, GEOMETRICA
4. University of Science and Technology of China
5. Shenzhen VisuCA Key Lab/SIAT
Abstract
We present an algorithm for
multi-scale
partial intrinsic symmetry detection over 2D and 3D shapes, where the scale of a symmetric region is defined by intrinsic distances between symmetric points over the region. To identify prominent symmetric regions which overlap and vary in form and scale, we decouple scale extraction and symmetry extraction by performing two levels of clustering. First, significant symmetry scales are identified by clustering sample point
pairs
from an input shape. Since different point pairs can share a common point, shape regions covered by points in different scale clusters can overlap. We introduce the
symmetry scale matrix
(SSM), where each entry estimates the likelihood two point pairs belong to symmetries at the same scale. The
pair-to-pair
symmetry affinity is computed based on a pair signature which encodes scales. We perform spectral clustering using the SSM to obtain the scale clusters. Then for all points belonging to the same scale cluster, we perform the second-level spectral clustering, based on a novel
point-to-point
symmetry affinity measure, to extract partial symmetries at that scale. We demonstrate our algorithm on complex shapes possessing rich symmetries at multiple scales.
Funder
Ministry of Science and Technology of the People's Republic of China
Natural Sciences and Engineering Research Council of Canada
National Natural Science Foundation of China
Shenzhen Science and Innovation Program
Publisher
Association for Computing Machinery (ACM)
Subject
Computer Graphics and Computer-Aided Design
Cited by
24 articles.
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